64th ISI World Statistics Congress

64th ISI World Statistics Congress

Novel Bayesian Adaptive Designs for Targeted Therapies and Immunotherapies

Organiser

YY
Dr Ying Yuan

Participants

  • BG
    Beibei Guo
    (Chair)

  • YZ
    Yong Zang
    (Presenter/Speaker)
  • Modified isotonic regression based phase I/II clinical trial designs identifying optimal biological

  • SL
    Dr Suyu Liu
    (Presenter/Speaker)
  • A Bayesian Phase I/II Trial Design for Cancer clinical Trials Combining Immunotherapy and Chemotherapy

  • DJ
    Depeng Jiang
    (Presenter/Speaker)
  • Bayesian adaptive promising zone design for cancer immunotherapy

  • YY
    Dr Ying Yuan
    (Discussant)

  • Abstract

    Modified isotonic regression based phase I/II clinical trial designs identifying optimal biological dose
    Yong Zang
    Indiana University

    Conventional phase I/II clinical trial designs often use complicated parametric models to characterize the dose-response relationships and conduct the trials. However, the parametric models are hard to justify in practice, and the misspecification of parametric models can lead to substantially undesirable performances in phase I/II trials. Moreover, it is difficult for the physicians conducting phase I/II trials to clinically interpret the parameters of these complicated models, and such significant learning costs impede the translation of novel statistical designs into practical trial implementation. To solve these issues, we propose a transparent and efficient phase I/II clinical trial design, referred to as the modified isotonic regression-based design (mISO), to identify the optimal biological doses for molecularly targeted agents and immunotherapy. The mISO design makes no parametric model assumptions on the dose-response relationship and yields desirable performances under any clinically meaningful dose-response curves. Our comprehensive simulation studies show that the mISO and mISO-B designs are highly efficient in optimal biological dose selection and patients allocation and outperform many existing phase I/II clinical trial designs.

    A Bayesian Phase I/II Trial Design for Cancer clinical Trials Combining Immunotherapy and Chemotherapy
    Suyu Liu
    University of Texas MD Anderson Cancer Center

    Immunotherapy is an innovative treatment approach that harnesses a patient's immune system to treat cancer. It has provided an alternative and complementary treatment modality to conventional chemotherapy. Combining immunotherapy with cytotoxic chemotherapy agent has become the leading trend and the most active research field in oncology. To accommodate this growing trend, we propose a Bayesian phase I/II dose-finding design to identify the optimal biological dose combination (OBDC), defined as the dose combination with the highest desirability in the risk-benefit tradeoff. We propose new statistical models to describe the relationship between the doses and treatment outcomes, including immune response, toxicity, and progression-free survival (PFS). During the trial, based on accrued data, we continuously update model estimates and adaptively assign patients to dose combinations with high desirability. The simulation study shows that our design has desirable operating characteristics.

    Bayesian adaptive promising zone design for cancer immunotherapy
    Depeng Jiang1
    University of Manitoba

    The indirect mechanism of immunotherapy for cancer might lead to the delay of treatment effect and the delay times are often heterogeneous among patients. In this paper, we proposed an adaptive design with the sample size being adjusted in an interim analysis. We first used the interim data to re-estimate the survival parameters and parameters in the individual delay time distribution. Then we calculated the conditional power and adjusted the sample size based on this conditional power. The results indicate that our proposed promising zone design improved the conditional power remarkably over the existing designs.